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Distinguishing Planting Structures of Different Complexity from UAV Multispectral Images

机译:区分从UAV MultiSpectral图像中不同复杂性的种植结构

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摘要

This study explores the classification potential of a multispectral classification model for farmland with planting structures of different complexity. Unmanned aerial vehicle (UAV) remote sensing technology is used to obtain multispectral images of three study areas with low-, medium-, and high-complexity planting structures, containing three, five, and eight types of crops, respectively. The feature subsets of three study areas are selected by recursive feature elimination (RFE). Object-oriented random forest (OB-RF) and object-oriented support vector machine (OB-SVM) classification models are established for the three study areas. After training the models with the feature subsets, the classification results are evaluated using a confusion matrix. The OB-RF and OB-SVM models’ classification accuracies are 97.09% and 99.13%, respectively, for the low-complexity planting structure. The equivalent values are 92.61% and 99.08% for the medium-complexity planting structure and 88.99% and 97.21% for the high-complexity planting structure. For farmland with fragmentary plots and a high-complexity planting structure, as the planting structure complexity changed from low to high, both models’ overall accuracy levels decreased. The overall accuracy of the OB-RF model decreased by 8.1%, and that of the OB-SVM model only decreased by 1.92%. OB-SVM achieves an overall classification accuracy of 97.21%, and a single-crop extraction accuracy of at least 85.65%. Therefore, UAV multispectral remote sensing can be used for classification applications in highly complex planting structures.
机译:本研究探讨了种植结构不同复杂性的农田多光谱分类模型的分类潜力。无人驾驶飞行器(UAV)遥感技术用于获得三个研究区域的多光谱图像,分别包含三种,中等和高复杂性种植结构,其中包含三种,五种和八种作物。三个研究区域的特征子集通过递归特征消除(RFE)选择。面向对象的随机森林(OB-RF)和面向对象的支持向量机(OB-SVM)分类模型是为三个研究领域建立的。使用特征子集训练模型后,使用混淆矩阵评估分类结果。 OB-RF和OB-SVM模型的分类精度分别为97.09%和99.13%,用于低复杂性种植结构。中等复杂性种植结构的等效值为92.61%和99.08%,高复杂性种植结构的88.99%和97.21%。对于具有零碎地块的农田和高度复杂的种植结构,随着种植结构的复杂性从低到高,型号的整体精度水平降低。 OB-RF模型的总体精度降低了8.1%,OB-SVM型号仅降低1.92%。 OB-SVM实现了97.21%的整体分类准确性,单一作物提取精度至少为85.65%。因此,UAV MultiSpectral遥感可用于高度复杂的种植结构中的分类应用。

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